Guest Editorial: Deep Neural Networks for Graphs: Theory, Models, Algorithms, and Applications
Abstract
Deep neural networks for graphs (DNNGs) represent an emerging field that studies how the deep learning method can be generalized to graph-structured data. Since graphs are a powerful and flexible tool to represent complex information in the form of patterns and their relationships, ranging from molecules to protein-to-protein interaction networks, to social or transportation networks, or up to knowledge graphs, potentially modeling systems at very different scales, these methods have been exploited for many application domains.
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Pietro Liò, Yu Guang Wang, Shirui Pan, Ming Li
"Guest Editorial: Deep Neural Networks for Graphs: Theory, Models, Algorithms, and Applications".
IEEE Transactions on Neural Networks and Learning Systems,
vol: 35,
No. 4
Apr. 2024, pp: 4367-4372,
https://scholar9.com/publication-detail/guest-editorial-deep-neural-networks-for-graphs--28742